Script, Language, and Labels: Overcoming Three Discrepancies for Low-Resource Language Specialization

Jaeseong Lee, Dohyeon Lee, Seung-won Hwang
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Abstract

Although multilingual pretrained models (mPLMs) enabled support of various natural language processing in diverse languages, its limited coverage of 100+ languages lets 6500+ languages remain ‘unseen’. One common approach for an unseen language is specializing the model for it as target, by performing additional masked language modeling (MLM) with the target language corpus. However, we argue that, due to the discrepancy from multilingual MLM pretraining, a naive specialization as such can be suboptimal. Specifically, we pose three discrepancies to overcome. Script and linguistic discrepancy of the target language from the related seen languages, hinder a positive transfer, for which we propose to maximize representation similarity, unlike existing approaches maximizing overlaps. In addition, label space for MLM prediction can vary across languages, for which we propose to reinitialize top layers for a more effective adaptation. Experiments over four different language families and three tasks shows that our method improves the task performance of unseen languages with statistical significance, while previous approach fails to.
文字、语言和标签:克服低资源语言专门化的三个差异
尽管多语言预训练模型(mplm)支持多种语言的各种自然语言处理,但其对100多种语言的有限覆盖使6500多种语言仍然“看不见”。对于看不见的语言,一种常见的方法是通过使用目标语言语料库执行额外的掩码语言建模(MLM),将其模型专门化为目标语言。然而,我们认为,由于多语言传销预训练的差异,这样的朴素专业化可能是次优的。具体来说,我们提出了三个需要克服的差异。目标语的文字和语言差异会阻碍正向迁移,因此我们建议最大化表征相似性,而不是现有的最大化重叠的方法。此外,传销预测的标签空间可能因语言而异,为此我们建议重新初始化顶层以获得更有效的适应。在四个不同的语族和三个任务上的实验表明,我们的方法对未见过的语言的任务性能有显著的提高,而以前的方法没有。
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